Learning hidden chemistry with deep neural networks

被引:2
|
作者
Nguyen, Tien-Cuong [1 ]
Nguyen, Van-Quyen [2 ]
Ngo, Van-Linh [3 ]
Than, Quang-Khoat [3 ]
Pham, Tien-Lam [2 ,4 ]
机构
[1] VNU Univ Sci, 334 Nguyen Trai, Hanoi, Vietnam
[2] Phenikaa Univ, Phenikaa Inst Adv Study PIAS, Hanoi 12116, Vietnam
[3] Hanoi Univ Sci & Technol, 1 Dai Co Viet, Hanoi, Vietnam
[4] Phenikaa Univ, Fac Comp Sci, Hanoi 12116, Vietnam
关键词
Deep learning; Materials informatics; Materials discovery; Materials similarity;
D O I
10.1016/j.commatsci.2021.110784
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We demonstrate a machine learning approach designed to extract hidden chemistry/physics to facilitate new materials discovery. In particular, we propose a novel method for learning latent knowledge from material structure data in which machine learning models are developed to present the possibility that an atom can be paired with a chemical environment in an observed materials. For this purpose, we trained deep neural networks acquiring information from the atom of interest and its environment to estimate the possibility. The models were then used to establish recommendation systems, which can suggest a list of atoms for an environment within a structure. The center atom of that environment was then replaced with the various recommended atoms to generate new structures. Based on these recommendations, we also propose a method of dissimilarity measurement between the atoms and, through hierarchical cluster analysis and visualization using the multidimensional scaling algorithm, illustrate that this dissimilarity can reflect the chemistry of the elements. Finally, our models were applied to the discovery of new structures in the well-known magnetic material Nd2Fe14B. Our models propose 108 new structures, 71 of which are confirmed to converge to local-minimum-energy structures with formation energy less than +0.1 eV by first-principles calculations.
引用
收藏
页数:7
相关论文
共 50 条
  • [31] Robust learning of parsimonious deep neural networks
    Guenter, Valentin Frank Ingmar
    Sideris, Athanasios
    NEUROCOMPUTING, 2024, 566
  • [32] Experiential Robot Learning with Deep Neural Networks
    Aly, Ahmed A.
    Dugan, Joanne Bechta
    2017 THE SEVENTH JOINT IEEE INTERNATIONAL CONFERENCE ON DEVELOPMENT AND LEARNING AND EPIGENETIC ROBOTICS (ICDL-EPIROB), 2017, : 356 - 361
  • [33] Deep Learning for Epidemiologists: An Introduction to Neural Networks
    Serghiou, Stylianos
    Rough, Kathryn
    AMERICAN JOURNAL OF EPIDEMIOLOGY, 2023, 192 (11) : 1904 - 1916
  • [34] Learning Sparse Patterns in Deep Neural Networks
    Wen, Weijing
    Yang, Fan
    Su, Yangfeng
    Zhou, Dian
    Zeng, Xuan
    2019 IEEE 13TH INTERNATIONAL CONFERENCE ON ASIC (ASICON), 2019,
  • [35] Piecewise linear neural networks and deep learning
    Tao, Qinghua
    Li, Li
    Huang, Xiaolin
    Xi, Xiangming
    Wang, Shuning
    Suykens, Johan A. K.
    NATURE REVIEWS METHODS PRIMERS, 2022, 2 (01):
  • [36] Piecewise linear neural networks and deep learning
    Nature Reviews Methods Primers, 2 (1):
  • [37] On the Expressivity of Neural Networks for Deep Reinforcement Learning
    Dong, Kefan
    Luo, Yuping
    Yu, Tianhe
    Finn, Chelsea
    Ma, Tengyu
    25TH AMERICAS CONFERENCE ON INFORMATION SYSTEMS (AMCIS 2019), 2019,
  • [38] Evolutionary neural networks for deep learning: a review
    Yongjie Ma
    Yirong Xie
    International Journal of Machine Learning and Cybernetics, 2022, 13 : 3001 - 3018
  • [39] Deep supervised learning with mixture of neural networks
    Hu, Yaxian
    Luo, Senlin
    Han, Longfei
    Pan, Limin
    Zhang, Tiemei
    ARTIFICIAL INTELLIGENCE IN MEDICINE, 2020, 102
  • [40] Variational tensor neural networks for deep learning
    Jahromi, Saeed S.
    Orus, Roman
    SCIENTIFIC REPORTS, 2024, 14 (01):